Karnuta Jaret M, Navarro Sergio M, Haeberle Heather S, Billow Damien G, Krebs Viktor E, Ramkumar Prem N
Department of Orthopedic Surgery, Cleveland Clinic, Cleveland, OH.
Said Business School, University of Oxford, Oxford, United Kingdom.
J Orthop Trauma. 2019 Jul;33(7):324-330. doi: 10.1097/BOT.0000000000001454.
With the transition to a value-based model of care delivery, bundled payment models have been implemented with demonstrated success in elective lower extremity joint arthroplasty. Yet, hip fracture outcomes are dependent on patient-level factors that may not be optimized preoperatively due to acuity of care. The objectives of this study are to (1) develop a supervised naive Bayes machine-learning algorithm using preoperative patient data to predict length of stay and cost after hip fracture and (2) propose a patient-specific payment model to project reimbursements based on patient comorbidities.
Using the New York Statewide Planning and Research Cooperative System database, we studied 98,562 Medicare patients who underwent operative management for hip fracture from 2009 to 2016. A naive Bayes machine-learning model was built using age, sex, ethnicity, race, type of admission, risk of mortality, and severity of illness as predictive inputs.
Accuracy was demonstrated at 76.5% and 79.0% for length of stay and cost, respectively. Performance was 88% for length of stay and 89% for cost. Model error analysis showed increasing model error with increasing risk of mortality, which thus increased the risk-adjusted payment for each risk of mortality.
Our naive Bayes machine-learning algorithm provided excellent accuracy and responsiveness in the prediction of length of stay and cost of an episode of care for hip fracture using preoperative variables. This model demonstrates that the cost of delivery of hip fracture care is dependent on largely nonmodifiable patient-specific factors, likely making bundled care an implausible payment model for hip fractures.
随着向基于价值的医疗服务模式转变,捆绑支付模式已在择期下肢关节置换术中成功实施。然而,髋部骨折的治疗结果取决于患者个体因素,由于急症护理,这些因素在术前可能无法得到优化。本研究的目的是:(1)使用术前患者数据开发一种监督式朴素贝叶斯机器学习算法,以预测髋部骨折后的住院时间和费用;(2)提出一种针对患者的支付模型,根据患者的合并症预测报销费用。
利用纽约州全州规划和研究合作系统数据库,我们研究了98562名在2009年至2016年期间接受髋部骨折手术治疗的医疗保险患者。使用年龄、性别、种族、民族、入院类型、死亡风险和疾病严重程度作为预测输入,建立了朴素贝叶斯机器学习模型。
住院时间和费用的预测准确率分别为76.5%和79.0%。住院时间的预测性能为88%,费用的预测性能为89%。模型误差分析表明,随着死亡风险增加,模型误差增大,因此增加了针对每种死亡风险的风险调整支付。
我们的朴素贝叶斯机器学习算法在使用术前变量预测髋部骨折护理期间的住院时间和费用方面具有出色的准确性和响应性。该模型表明,髋部骨折护理的费用在很大程度上取决于不可改变的患者个体因素,这可能使捆绑护理成为一种不合理的髋部骨折支付模式。